Notepad
The notepad is empty.
The basket is empty.
Free shipping possible
Free shipping possible
Please wait - the print view of the page is being prepared.
The print dialogue opens as soon as the page has been completely loaded.
If the print preview is incomplete, please close it and select "Print again".

Cache Replacement Policies

E-bookPDFE-book
EUR35,30

Product description

This book summarizes the landscape of cache replacement policies for CPU data caches. The emphasis is on algorithmic issues, so the authors start by defining a taxonomy that places previous policies into two broad categories, which they refer to as coarse-grained and fine-grained policies. Each of these categories is then divided into three subcategories that describe different approaches to solving the cache replacement problem, along with summaries of significant work in each category. Richer factors, including solutions that optimize for metrics beyond cache miss rates, that are tailored to multi-core settings, that consider interactions with prefetchers, and that consider new memory technologies, are then explored. The book concludes by discussing trends and challenges for future work. This book, which assumes that readers will have a basic understanding of computer architecture and caches, will be useful to academics and practitioners across the field.
Read more

Details

Additional ISBN/GTIN9783031017629
Product TypeE-book
BindingE-book
FormatPDF
FormatE107
Publishing date01/06/2022
Edition1. Auflage
LanguageEnglish
IllustrationsXV, 71 p.
Article no.10817828
CatalogsVC
Data source no.3457355
Product groupBU684
More details

Series

Ratings

Author

Akanksha Jain is a Research Associate at The University of Texas at Austin. She received her Ph.D. in Computer Science from The University of Texas in August 2016. In 2009, she received B. Tech and M. Tech degrees in Computer Science and Engineering from the Indian Institute of Technology Madras. Her research interests are in computer architecture, with a particular focus on the memory system and on using machine learning techniques to improve the design of memory system optimizations.Calvin Lin is a University Distinguished Teacher Professor of Computer Science at The University of Texas at Austin. Lin received the BSE in Computer Science from Princeton University in 1985 (Magna Cum Laude) and the Ph.D. in Computer Science from the University of Washington in December 1992. Lin was a postdoc at the University of Washington until 1996, when he joined the faculty at Texas. Lins research takes a broad view of how compilers and computer hardware can be used to improve system performance,system security, and programmer productivity. He is also Director of UTs Turing Scholars Honors Program, and when he is notworking, he can be found chasing his two young sons or coaching the UT mens ultimate frisbee team.

Subjects

VLB main reading rationale